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In this article we present the first steps in developing an NLP algorithm for automatic detection of inadequate reporting of research results (known as spin) in biomedical articles. Inadequate reporting consists in presenting the experimental treatment as having a greater beneficial effect than it was shown by the research results. We propose a scheme for an algorithm that would automatically identify important claims in the articles abstracts, extract possible
\nsupporting information from the article and check the adequacy of the claims. We present the state of the art and our first experiments for three tasks related to spin detection: classification of articles according to the type of reported clinical trial; classification of sentences in the abstracts aimed at identifying mentions of the Results and Conclusions of the experiment; and extraction of some trial characteristics. For each task, we outline possible directions of further work.
Any material (publications, posters, presentations, etc.) produced in the context of the MiRoR project by consortium members and Early Stage Researchers
\r\n", "page": "MIROR is an innovative and ambitious joint doctoral training programme dedicated to Methods in Research on Research (MIROR) in the field of clinical research.
\r\n\r\n“Research on Research”, is an emerging new scientific discipline that aims to reduce waste in research and increase research value. Tens of billions of Euros are wasted each year on studies that are redundant, flawed in their design, never published or poorly reported. The public is the main victim of this waste and reducing waste and increasing value of research represents a major societal challenge.
\r\n\r\nOur overarching aim is to train the future generations of top-level scientists in Research on Research and to develop creative solutions to transform clinical research practice and increase its value.
\r\n\r\nThis project has received funding from the European Union’s Horizon 2020 research and innovation programme under the Marie Sklodowska-Curie grant agreement No 676207.
\r\n\r\nProject website: http://miror-ejd.eu
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